In Time and Space: Towards Usable Adaptive Control for Assistive Robotic Arms
July 06, 2023 Β· Declared Dead Β· π IEEE International Symposium on Robot and Human Interactive Communication
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Authors
Max Pascher, Kirill Kronhardt, Felix Ferdinand Goldau, Udo Frese, Jens Gerken
arXiv ID
2307.02933
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI,
cs.RO
Citations
9
Venue
IEEE International Symposium on Robot and Human Interactive Communication
Last Checked
4 months ago
Abstract
Robotic solutions, in particular robotic arms, are becoming more frequently deployed for close collaboration with humans, for example in manufacturing or domestic care environments. These robotic arms require the user to control several Degrees-of-Freedom (DoFs) to perform tasks, primarily involving grasping and manipulating objects. Standard input devices predominantly have two DoFs, requiring time-consuming and cognitively demanding mode switches to select individual DoFs. Contemporary Adaptive DoF Mapping Controls (ADMCs) have shown to decrease the necessary number of mode switches but were up to now not able to significantly reduce the perceived workload. Users still bear the mental workload of incorporating abstract mode switching into their workflow. We address this by providing feed-forward multimodal feedback using updated recommendations of ADMC, allowing users to visually compare the current and the suggested mapping in real-time. We contrast the effectiveness of two new approaches that a) continuously recommend updated DoF combinations or b) use discrete thresholds between current robot movements and new recommendations. Both are compared in a Virtual Reality (VR) in-person study against a classic control method. Significant results for lowered task completion time, fewer mode switches, and reduced perceived workload conclusively establish that in combination with feedforward, ADMC methods can indeed outperform classic mode switching. A lack of apparent quantitative differences between Continuous and Threshold reveals the importance of user-centered customization options. Including these implications in the development process will improve usability, which is essential for successfully implementing robotic technologies with high user acceptance.
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